The Central Role of Bayes' Theorem for Joint Estimation of Causal Effects and Propensity Scores.

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🔗 View Article (PMID 27482121)

Published in Am Stat on December 14, 2015

Authors

Corwin Matthew Zigler1

Author Affiliations

1: Department of Biostatistics, Harvard T.H. Chan School of Public Health.

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